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Approval Voting and Incentives in Crowdsourcing

机译:投票批准在众包和激励

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The growing need for labeled training data has made crowdsourcing a vital tool for developing machine learning applications. Here, workers on a crowdsourcing platform are typically shown a list of unlabeled items, and for each of these items, are asked to choose a label from one of the provided options. The workers in crowdsourcing platforms are not experts, thereby making it essential to judiciously elicit the information known to the workers. With respect to this goal, there are two key shortcomings of current systems: (i) the incentives of the workers are not aligned with those of the requesters; and (ii) the interface does not allow workers to convey their knowledge accurately by forcing them to make a single choice among a set of options. In this article, we address these issues by introducing approval voting to utilize the expertise of workers who have partial knowledge of the true answer and coupling it with two strictly proper scoring rules. We additionally establish attractive properties of optimality and uniqueness of our scoring rules.We also conduct preliminary empirical studies on Amazon Mechanical Turk, and the results of these experiments validate our approach.
机译:标记的训练数据的需求越来越大众包发展的重要工具机器学习应用。众包平台通常显示一个列表标记的物品,这些物品,被要求选择一个标签的提供选项。平台不是专家,从而使它明智而审慎地引起信息的关键工人们。有两个关键的缺点系统:(i)的激励员工不符合这些请求者;(2)不允许工人的接口迫使他们准确传达他们的知识一组选项之间做出一个选择。在本文中,我们解决这些问题介绍利用投票批准专业知识工人的部分知识真正的答案和耦合两种严格的评分规则。建立有吸引力的最优性和属性独特性的评分规则。初步的实证研究在亚马逊机械土耳其人,这些结果实验验证我们的方法。

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